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Uncorrelated trace ratio linear discriminant analysis for undersampled problems

机译:欠采样问题的不相关迹线比率线性判别分析

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摘要

For linear discriminant analysis (LDA), the ratio trace and trace ratio are two basic criteria generalized from the classical Fisher criterion function, while the orthogonal and uncorrelated constraints are two common conditions imposed on the optimal linear transformation. The ratio trace criterion with both the orthogonal and uncorrelated constraints have been extensively studied in the literature, whereas the trace ratio criterion receives less interest mainly due to the lack of a closed-form solution and efficient algorithms. In this paper, we make an extensive study on the uncorrelated trace ratio linear discriminant analysis, with particular emphasis on the application on the undersampled problem. Two regularization uncorrelated trace ratio LDA models are discussed for which the global solutions are characterized and efficient algorithms are established. Experimental comparison on several LDA approaches are conducted on several real world datasets, and the results show that the uncorrelated trace ratio LDA is competitive with the orthogonal trace ratio LDA, but is better than the results based on ratio trace criteria in terms of the classification performance.
机译:对于线性判别分析(LDA),比率迹线和迹线比率是从经典Fisher准则函数概括的两个基本准则,而正交约束和不相关约束是施加于最佳线性变换的两个常见条件。在文献中已经广泛研究了具有正交约束和不相关约束的比率跟踪准则,而跟踪比率准则受到的关注较少,这主要是由于缺乏封闭形式的解决方案和有效的算法。在本文中,我们对不相关的迹线比率线性判别分析进行了广泛的研究,尤其着重于欠采样问题的应用。讨论了两个正则化不相关的跟踪比率LDA模型,针对它们描述了全局解决方案并建立了有效的算法。在几个真实的数据集上对几种LDA方法进行了实验比较,结果表明,不相关的痕迹比LDA与正交痕迹比LDA竞争,但在分类性能方面优于基于比率痕迹标准的结果。 。

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